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amanda arevalo rachel evora randy mendoza marille faltado louie lorenzo
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Presented by :Amanda R. Arevalo
Rachel EvoraMariela FaltadoRandy Mendoza
A stock or store of goods
The raw materials, component parts, work-in-process, or finished products that are held at a location in the supply chain.
The goods and materials that a business holds for the ultimate purpose of resale (or repair).
Represents one of the most important assets that most businesses possess, because the turnover of inventory represents one of the primary sources of revenue generation and subsequent earnings for the company's shareholders/owners.
Inventory can be the most expensive and the most important asset for an organization
Raw materials inventory – purchased but not processed
WIP (work in progress ) inventory - partially completed goods or goods that undergone some change but not completed
Finished-goods inventory (manufacturing firm) or merchandise inventory(retail store) – completed products for delivery or shipment
Pipeline inventory - Goods-in-transit to warehouses or customers
MRO (Maintenance, Repairs, and operating Supplies) inventory – Replacement parts, tools and supplies neccessary to keep machinery and processes productive
Suppliers Customers
Finished Goods
Raw Materials
Work in Process
Fabrication and
Assembly
Inventory Storage
Inventory Processing
The supervision of supply, storage and accessibility of items in order to ensure an adequate supply without excessive oversupply.
Maintaining the inventory at a desired level. The desired level keeps on fluctuating as per the demand and supply of goods.
To achieve satisfactory levels of customer service while keeping inventory costs within reasonable bounds
– Level of customer service
– Costs of ordering and carrying inventory
to meet anticipated customer demand (to meet the anticipation stocks, average demand)
to smooth production requirements (create seasonal inventories to meet seasonal demand)
to decouple operations (eliminate sources of disruptions)
to protect against stock-outs (hold safety stocks to prevent the risk of shortages)
to take advantage of order cycles (buys more quantities than immediate requirements - cycle stock, periodic orders, or order cycles)
to hedge against price increases (purchase large order to hedge future price increase or implement volume discount)
to permit operations (Little's Law: the average amount of inventory in a system is equal to the product of the average demand rate and the average time a unit is in the system)
to take advantage of quantity discounts (supplies may give discount on large orders)
There are two basic decisions that must be made for every item that is maintained in inventory.
These decisions have to do with the timing of orders for the item and the size of orders for the item.
• How much to order
• When to order
Basic Inventory Decisions
Lot sizing decision
Determination of the quantity to be
ordered
Lot sizing decision
Determination of the quantity to be
ordered
How much ?
Lot timing decision
Determination of the timing for the
orders
Lot timing decision
Determination of the timing for the
orders
When ?
Some inventory items can be classified as independent demand items, and some can be classified as dependent demand items.
The manner in which we make inventory decisions will differ depending upon whether the item has independent demand or dependent demand.
A
Independent Demand:Finished GoodsIndependent Demand:Finished Goods
Dependent Demand:Raw Materials, Component parts,Sub-assemblies, etc.
Dependent Demand:Raw Materials, Component parts,Sub-assemblies, etc.
CUSTOMER DEMANDCUSTOMER DEMAND
A technique for determining the best answers to the how much and when questions.
Based on the premise that there is an optimal order size that will yield the lowest possible value of the total inventory cost.
1. Demand for the item is known and constant.2. Lead time is known and constant. (Lead time is the amount
of time that elapses between when the order is placed and when it is received.)
3. When an order is received, all the items ordered arrive at once (instantaneous replenishment).
4. The cost of all units ordered is the same, regardless of the quantity ordered (no quantity discounts).
5. Ordering costs are known and constant (the cost to place an order is always the same, regardless of the quantity ordered).
6. Since there is certainty with respect to the demand rate and the lead time, orders can be timed to arrive just when we would have run out. Consequently the model assumes that there will be no shortages.
There are only two costs that will vary with changes in the order quantity:
1. the total annual ordering cost2. the total annual holding cost.
Shortage cost can be ignored because of assumption No. 6.
Since the cost per unit of all items ordered is the same, the total annual item cost will be a constant and will not be affected by the order quantity.
Inventory levels will fluctuate over time as in the following graph:
D = annual demandS = cost per orderH = holding cost per unit per
year Q = order quantity
D = annual demandS = cost per orderH = holding cost per unit per
year Q = order quantity
Total Annual Ordering Cost = Annual
DemandOrder Quantity
x Cost per order
= DQ
x S
Total Annual Ordering Cost = (D/Q) S
D = annual demandS = cost per orderH = holding cost per unit per
year Q = order quantity
D = annual demandS = cost per orderH = holding cost per unit per
year Q = order quantity
Total Annual Holding Cost = Order Quantity
2x
= Q2
x H
Total Annual Holding Cost = (Q/2) H
Holding cost per
unit per year
D = annual demandS = cost per orderH = holding cost per unit per
year Q = order quantity
D = annual demandS = cost per orderH = holding cost per unit per
year Q = order quantity
Total Inventory Cost =
= Q2
x H
Total Inventory Cost = (D/Q)S + (Q/2) H
Total Annual Ordering Cost + Total Annual
Holding Cost
DQ
x S +
EOQ occurs when :
Total Annual Ordering Cost = Total Annual
Holding Cost
D/Q)S = (Q/2)H
Simplifying the equation, we have :
This can also be written as :
Q* represents the optimal value for Q
This is what we call the EOQ
Q2 = (2DS)/H
Q* = √2DS/H
Given the following data for an inventory scenario whose characteristics fit the assumptions of the basic EOQ model:
D = 15,000 units per yearS = $3 per orderH = $1 per unit per yearLT = Replenishment = lead time = 2 days Operating days per year is assumed to be 300
days
Find the following:
1. Average daily demand
2. EOQ
3. Number of orders placed per year
4. Total annual ordering cost
5. Total annual holding cost
6. Time between orders
7. Reorder point (in units)
8. Average inventory level
1. Average daily demand
15,000 units/yr ÷ 300 days/yr = 50 units per day
2. EOQ
EOQ = √2DS/H = √(2)(15,000)(3)/(1) = 300 units/order
3. Number of orders placed per year
D/Q = (15,000 units/yr)/(300 units/order) = 50 orders/yr
4. Total annual ordering cost
(D/Q)(S) = [(15,000units/yr)/(300 units/order)]($3/order) = $150/yr
5. Total annual holding cost
(Q/2)H = [(300 units/order/2)]($1/unit/yr) = $150/yr
6. Time between orders
(Q/d) = (300 units/order)/(50 units/day) = 6 days/order or300days/yr÷50 orders/yr = 6 days/order
7. Reorder point (in units)
ROP = (daily demand)(Lead time) = (50 units/day)(2 days) = 100 units
8. Average inventory level
Q/2 = 300 units/2 = 150 units
At optimal order quantity (Q*): Carrying cost = Ordering cost
OUTPUT VALUESOUTPUT VALUESINPUT VALUESINPUT VALUES
Annual Demand Annual Demand
Ordering CostOrdering Cost
Carrying CostCarrying Cost
Lead TimeLead Time
Demand Per DayDemand Per Day
Economic Order Quantity (EOQ)Economic Order Quantity (EOQ)
Reorder Point (ROP)Reorder Point (ROP)EOQ
Models
After Q* is determined, the second decision is when to order
Orders must usually be placed before inventory reaches 0 due to order lead time
Lead time is the time from placing the order until it is received
The reorder point (ROP) depends on the lead time (LT)
Given the following data :
D = 1,000 units per yearLead Time (LT) = 3 business days Operating days per year is assumed to be250
days
Find the Reorder Point (ROP)
Solution :
Daily Demand (d) =
Daily demand (d) = 4 units per day
Reorder Point (ROP) = Daily Demand (d) x Lead Time (LT)
Reorder Point (ROP) = 4 units per day x 3 business days
Reorder Point (ROP) = 12 units
1,000 units per year
250 days per year
Economic Production Quantity : Determining How Much to Produce
The EOQ model assumes inventory arrives instantaneously
In many cases inventory arrives gradually
The economic production quantity (EPQ) model assumes inventory is being produced at a rate of p units per day
There is a setup cost each time production begins
Parameters
Q* = Optimal production quantity (or EPQ)
Cs = Setup cost
D = annual demand
d = daily demand rate
p = daily production rate
We will need the average inventory level for finding carrying cost
Average inventory level is ½ the maximum
Max inventory = Q x (1- d/p)Ave inventory = ½ Q x (1- d/p)
Total Cost consists of :
Setup cost = (D/Q) x Cs
Carrying cost = [½ Q x (1- d/p)] x Ch
Production cost = P x D
As in the EOQ model:
The production cost does not depend on Q
The function is nonlinear
As in the EOQ model, at the optimal quantity Q* we should have:
Setup cost = Carrying cost (D/Q*) x Cs = [½ Q* x (1- d/p)] x Ch
Rearranging to solve for Q* :
Q* =
Brown Manufacturing produces mini refrigerators and has 167 business days per year. Other relevant data are given below :
D = 10,000 units annuallyd = 1000 / 167 = ~60 units per dayp = 80 units per day (when producing)Ch = $0.50 per unit per year
Cs = $100 per setupP = $5 to produce each unit
The production cycle will last until Q* units have been produced
Producing at a rate of p units per day means that it will last (Q*/p) days
For Brown this is:
Q* = 4000 unitsp = 80 units per day4000 / 80 = 50 days
Single-Period Inventory ModelOne time purchasing decision (Example: vendor selling t-shirts at a football game)Seeks to balance the costs of inventory overstock and under stock
Multi-Period Inventory ModelsFixed-Order Quantity Models
Event triggered (Example: running out of stock)
Fixed-Time Period Models Time triggered (Example: Monthly sales call by sales representative)
A mathematical model in operations management and applied economics used to determine optimal inventory levels.
It is typically characterized by fixed prices and uncertain demand for a perishable product.
If the inventory level is q, each unit of demand above q is a lost in potential sales.
Also known as the Newsvendor Problem or Newsboy Problem by analogy with the situation faced by a newspaper vendor who must decide how many copies of the day's paper to stock in the face of uncertain demand and knowing that unsold copies will be worthless at the end of the day.
A one-time business decision that occurs in many different business contexts such as:
Buying seasonal goods (sometimes called style goods) - A “season” can be a day, week, year, etc. For example, most swimsuits can only be purchased seasonally. If a buyer orders too few swimsuits, the retailer will have lost sales and dissatisfied customers. If the buyer orders too many swimsuits, the retailer will have to sell them at a clearance price or even throw some away.
Making the last buy or last production run decision for a product (or component) that is near the end of its life cycle. - If the order size is too small, the firm will have stock outs and disappointed customers. If the order size is too large, the firm will only be able to sell the items for their salvage value.
Setting safety stock levels for an item. - If the safety stock is too low, stock outs will occur. If safety stock is too high, the firm has too much carrying cost. Nearly all safety stock models are newsvendor problems with the selling season being one order cycle or one review period. empty seats.
Setting target inventory levels – A salesperson carries inventory in the trunk of a vehicle. The inventory is controlled by a target inventory level. If the target is too low, stock outs will occur. If the target is too high, the salesperson will have too much carrying cost.
Selecting the right capacity for a facility or machine – If the capacity of a factory or a machine over the planning horizon is set too low, stock outs will occur. If capacity is set too high, the capital costs will be too high.
Overbooking customers – If an airline overbooks too many passengers, it incurs the cost of giving away free tickets to inconvenienced passengers. If the airline does not overbook enough seats, it incurs an opportunity cost of lost revenue from flying with empty seats.
All of these newsvendor problem contexts share a common mathematical structure with the following four elements:
A decision variable (Q) – The newsvendor problem is to find the optimal Q for a one-time decision, where Q is the decision quantity (order quantity, safety stock level, overbooking level, etc.). Q* denotes the optimal (best) value for Q.
Uncertain demand (D) – Demand is a random variable defined by the demand distribution and estimates of the distribution parameters. Demand may be either discrete (integer) or continuous.
Unit overage cost (Co) – This is the cost of buying one unit more than the demand during the one-period selling season. In the standard retail context, the overage cost is the unit cost (c) less the unit salvage value (s), i.e., Co = c – s. The salvage value is the salvage revenue less the salvage cost required to dispose of the unsold product.
Unit underage cost (Cu) – This is the cost of buying one unit less than the demand during the one-period selling season. This is also known as the stock out (or shortage) cost. In the retail context, the underage cost is computed as the lost contribution to profit, which is the unit price (p) less the unit cost (c), i.e., Cu = p – c
The “too much/too little problem”:
Order too much and inventory is left over at the end of the season
Order too little and sales are lost.
Given :Each suit sells for p = $180Seller charges c = $110 per suitDiscounted suits sell for v = $90
Given :Each suit sells for p = $180Seller charges c = $110 per suitDiscounted suits sell for v = $90
Co = overage cost (order “one too many” --- demand < order amount)
The cost of ordering one more unit than what you would have ordered had you known demand – if you have left over inventory the increase in profit you would have enjoyed had you ordered one fewer unit.
Co = Cost – Salvage value
Co = c – v
Co = 110 – 90
Co = 20
Cu = underage cost (order “one too few” – demand > order amount)
The cost of ordering one fewer unit than what you would have ordered had you known demand
If you had lost sales (i.e., you under ordered), Cu is the increase in profit you would have enjoyed had you ordered one more unit.
Cu = Price – Cost
Cu = p – c
Cu = 180 – 110
Cu = 70
To maximize expected profit order Q units so that the expected loss on the Qth unit equals the expected gain on the Qth unit:
Rearrange terms in the above equation ->
The ratio Cu / (Co + Cu) is called the critical ratio (CR).
We shall assume demand is distributed as the normal distribution with mean µ and standard deviation .
Find the Q that satisfies the above equality use NORMSINV(CR) with the critical ratio as the probability argument.
(Q - µ ) / = z - score for the CR so
Q = µ + z *
Note: where F(Q) = Probability Demand <= QNote: where F(Q) = Probability Demand <= Q
Inputs:
Empirical distribution function table; p = 180;
c = 110; v = 90; Cu = 180-110 = 70; Co = 110-
90 =20
Evaluate the critical ratio:
NORMSINV(.7778) = 0.765
Find an order quantity Q such that there is a 77.78% probability that demand is Q or lower.
Find an order quantity Q such that there is a 77.78% probability that demand is Q or lower.
Other Inputs: mean = µ = 3192;
standard deviation = = 1181
Convert into an order quantity
Q = µ + z * Q = 3192 + 0.765 * 1181Q = 4095
Useful when demand is uncertain and is a continuous variable while the product is perishable.
The only real
Example :al
The demand is approximately normally distributed with mean 11.731 and standard deviation 4.74.
Each copy is purchased for 25 cents and sold for 75 cents, and he is paid 10 cents for each unsold copy by his supplier.
One obvious solution is approximately 12 copies.
Suppose the vendor purchases a copy that he doesn't sell. His out-of-pocket expense is 25 cents 10 cents = 15 cents.
Suppose on the other hand, he is unable to meet the demand of a customer. In that case, he loses 75 cents 25 cents = 50 cents profit.
Co = Cost per unit of positive inventory remaining at the end of the period (known as the overage cost).
Cu = Cost per unit of unsatisfied demand. This can be thought of as a cost per unit of negative ending inventory (known as the underage cost).
Notation :al
The demand D is a continuous nonnegative random variable with density
function f (x) and cumulative
distribution function F(x).
The decision variable Q is the number of units to be purchased at the beginning of the period.
The cost function G(Q) is convex.The only real
uuou
Q
uo
Q
u
Q
o
Qu
Q
o
cQFcccdxxfcc
dxxfcdxxfc
dxxfcdxxfcdQ
dG
)()()(
1
][00
0
00
0
The optimal solution equation 0)()(2
2
QfccdQ
Gduo
uo
u
cc
cQF
*
Determining the optimal policy for function :The only real
0
2
4
6
8
10
12
-10 -6 -2 1000 200 300 400
(Tho
usan
ds)
G(Q
)
O Q*Q
Example (continuation) :
Normally distributed with mean µ = 11.73 and standard deviation = 4.74.
Co = 25 10 Cu = 75 25 = 15 cents = 50
cents
The critical ratio is = 0.50/0.65
= 0.77.
Purchase enough copies to satisfy all of the weekly demand with probability 0.77. The optimal Q* is the 77th percentile of the demand distribution.
uou ccc
Area = 0.77
11.73 Q* x
f(x)
Using the data of the normal distribution
we obtain a standardized value of z =
0.74. The optimal Q is
Hence, he should purchase 15 copies every week.
Example (continuation) :
1524.1573.1174.074.4* zQ
Recall the two general types of multi-period inventory models :
1. Fixed-order quantity models
Also called the economic order quantity, EOQ, and Q-model
Event triggered
2. Fixed-time period models
Also called the periodic system, periodic review system, fixed-order interval system, and P-model
Time triggered
Key Differences :
To use the fixed–order quantity model, the inventory remaining must be continually monitored
In a fixed–time period model, counting takes place only at the review period
The fixed–time period model
Has a larger average inventoryFavors more expensive itemsIs more appropriate for important itemsRequires more time to maintain
Fixed-Order Quantity Model
Demand for the product is constant and uniform throughout the period
Lead time (time from ordering to receipt) is constant
Price per unit of product is constant
Inventory holding cost is based on average inventory
Ordering or setup costs are constant
All demands for the product will be satisfied
Recall the Basic Fixed-Order Quantity (EOQ) Model
Recall the Basic Fixed-Order Quantity (EOQ) Formula
H 2
Q + S
Q
D + DC = TC H
2
Q + S
Q
D + DC = TC
Total Annual =Cost
AnnualPurchaseCost
AnnualOrderingCost
AnnualHoldingCost
+ + TC=Total annual costD =DemandC =Cost per unitQ =Order quantityS =Cost of placing an order or setup costR =Reorder pointL =Lead timeH=Annual holding and storage cost per unit of inventory
TC=Total annual costD =DemandC =Cost per unitQ =Order quantityS =Cost of placing an order or setup costR =Reorder pointL =Lead timeH=Annual holding and storage cost per unit of inventory
Q* = √2DS/H
Establishing Safety Stocks
Safety stock is the amount of inventory carried in addition to the expected demand
Safety stock can be determined based on many different criteria
A common approach is to simply keep a certain number of weeks of supply
Establishing Safety Stocks (con’t)
A better approach is to use probability
Assume demand is normally distributed
Assume we know mean and standard deviation
To determine probability, we plot a normal distribution for expected demand and note where the amount we have lies on the curve
Fixed Order Quantity Model
Fixed Order Quantity Model with Safety Stock
timelead during usage ofdeviation Standard
yprobabilit service afor deviations standard ofNumber z
daysin timeLead L
demanddaily Average d
unitsin point Reorder R
L
LzLdR
Fixed Time Period Model
Fixed Time Period Model with Safety Stock Formula
q = Average demand + Safety stock – Inventory currently on handq = Average demand + Safety stock – Inventory currently on hand
Where :q = quantity to be orderedT = the number of days between reviewsL =lead time in daysd = forecast average daily demandz =the number of standard deviations for a specified service
probability I = current inventory level, including items on orderT+L = standard deviation of demand over the review & lead
time
Determining the value of T+L
The standard deviation of a sequence of random events equals the square root of the sum of the variances
Fixed Time Period Model Sample Problem :
Average daily demand for a product is 20 units. The review period is 30 days, and lead time is 10 days. Management has set a policy of satisfying 96 percent of demand from items in stock. At the beginning of the review period there are 200 units in inventory. The daily demand standard deviation is 4 units.
Given the above information, how many units should be ordered ?
Solution :
T+ L d2 2 = (T + L) = 30 + 10 4 = 25.298 T+ L d
2 2 = (T + L) = 30 + 10 4 = 25.298
or 644.272, = 200 - 44.272 800 = q
200- 298)(1.75)(25. + 10)+20(30 = q
I - Z+ L)+(Td = q L+T
units 645
or 644.272, = 200 - 44.272 800 = q
200- 298)(1.75)(25. + 10)+20(30 = q
I - Z+ L)+(Td = q L+T
units 645