Location: WestVirginia Mountain Momma
Regione/Stato: Friuli-Venezia Giulia
Modello:
NBFL 1.6 110cv (2001-2005)
trovate anche le dissipazioni di potenza (che fissato il numero di giri, sono di fatto le dissipazioni di coppia)
come accennavo (a spanne) il 5% è un valore basso ma plausibile.
Wikipedia le attesta tra il 5% ed il 15%
http://en.wikipedia.org/wiki/Effective_torque
It's only rock 'n roll but I like it, like it, yes I do!
pierpower Ha scritto: puoi provare sul capitolo 1 del giancarlo ferrari.
oppure sul dante giacosa
o anche sul motori ad alta potenza specifica trovi qualcosa, ma verso la fine mi pare
Ho sfogliato ieri sera Motori ad alta potenza specifica ed all' appendice 3-VI riporta qualcosa sulle trasmissioni: porta un po' di esempi affermando che su un motore da 100cv stradale gli assorbimenti sono di circa 2-5cv per ogni "ingranamenti" (ovvero coppie di ingranaggi accoppiati ed in movimento) . Su un cambio tipo quello di un' Mx5 (motore longitudinale, cambio longitudinale e differenziale non integrato nel cambio) che tra cambio e differenziale ha circa 2-3 ingranamenti si ha quindi una dispersione di potenza che varia dai 4 ai 15cv di media: da circa 100cv si scende quindi a 85 circa.
Purtroppo non parla di coppia e di perdite o guadagni: vedo se riesco a trovare qualcosa sui libri che mi hai segnalato, ma che al momento non ho nella mia piccola biblioteca...se riesco vedo di scaricare qualcosa.
Intanto mi guardo anche i link che mi hai girato ed appena possibile vi giro anche il testo di Motori ad alta potenza specifica da cui ho estrapolato quanto scritto sopra.
Ricambi auto d'epoca, sportive anni '80/'90, youngtimers - consulenze - restauri: www.worksgarage.it
ItalianRoadsEventi: Drive your passion www.italianroads.it
La storia non è solo quella scritta sui libri di scuola...corre anche su strada
[url=http://www.worksgarage.altervista.org][/url]
smoke Ha scritto: giusto. È quella è proprio il momento ( o la coppia che è molto affine).
[ATTACH=CONFIG]30401[/ATTACH]
lui è stretto a 4 chilogrammi metro.
tu metti 39kg con una chiave da 0.1 metri ( coppia 3.9 kgm)
e non ce la fai
stessa forza con chiave da 0.2 metri (coppia 7.8 kgm) e la vite molla subito.
secondo me è meglio cominciare da esempi semplici e capirsi.
i motori hanno molte altre variabili che poi generano altri temi da approfondire...
Giusto, sui motori ci sono troppe variabili...pero' e' anche vero che vanno comunque prese in esame.
Per cominciare infatti, visto che e' un argomento che arricchisce tutti e che penso faccia piacere a tutti sviluppare ed approfondire ho deciso di fare una cosa: la mia ragazza ha un centro studi per ragazzi dai 6 anni fino all' universita' in cui da lezioni private, aiuto compiti ecc.
All' interno della struttura ha anche un paio di collaboratori che impartiscono lezioni di Fisica e matematica, se non erro uno e' pure ingegnere: giro la nostra discussione anche a loro in modo che possano darci, formule ed esempi alla mano, un aiuto nell' approfondimento dell'argomento.
Penso che possa essere una cosa simpatica e utile a chi decidesse di buttarsi su lavori che richiedano queste conoscenze
Ricambi auto d'epoca, sportive anni '80/'90, youngtimers - consulenze - restauri: www.worksgarage.it
ItalianRoadsEventi: Drive your passion www.italianroads.it
La storia non è solo quella scritta sui libri di scuola...corre anche su strada
[url=http://www.worksgarage.altervista.org][/url]
Location: WestVirginia Mountain Momma
Regione/Stato: Friuli-Venezia Giulia
Modello:
NBFL 1.6 110cv (2001-2005)
Fly Lemon Ha scritto: Ho sfogliato ieri sera Motori ad alta potenza specifica ed all' appendice 3-VI riporta qualcosa sulle trasmissioni: porta un po' di esempi affermando che su un motore da 100cv stradale gli assorbimenti sono di circa 2-5cv per ogni "ingranamenti" (ovvero coppie di ingranaggi accoppiati ed in movimento) . Su un cambio tipo quello di un' Mx5 (motore longitudinale, cambio longitudinale e differenziale non integrato nel cambio) che tra cambio e differenziale ha circa 2-3 ingranamenti si ha quindi una dispersione di potenza che varia dai 4 ai 15cv di media: da circa 100cv si scende quindi a 85 circa.
Purtroppo non parla di coppia e di perdite o guadagni: vedo se riesco a trovare qualcosa sui libri che mi hai segnalato, ma che al momento non ho nella mia piccola biblioteca...se riesco vedo di scaricare qualcosa.
Intanto mi guardo anche i link che mi hai girato ed appena possibile vi giro anche il testo di Motori ad alta potenza specifica da cui ho estrapolato quanto scritto sopra.
il migliore è il primo capitolo del Giancarlo ferrari, oppure sul Bocchi
ma non perdere tempo, basta che leggi queste 4 righe di wikipedia (quelle che ti ho già linkato):
Il valore della coppia varia al variare del rapporto di marcia inserito, ma prima di descriverne il perché bisogna avere sotto mano una tabella.
[TH="class: headerSort"]Marcia [/TH]
[TH="class: headerSort"]Giri/min della ruota motrice [/TH]
[TH="class: headerSort"]Coppia alla ruota [/TH]
[TH="class: headerSort"]Potenza alla ruota [/TH]
[TH="class: headerSort"][/TH]
[TH="class: headerSort"]Giri/min del motore [/TH]
[TH="class: headerSort"]Coppia del motore [/TH]
[TH="class: headerSort"]Potenza del motore [/TH]
1
375
1120 N·m
44 kW
6000
70 N·m
44 kW
2
1600
262 N·m
44 kW
6000
70 N·m
44 kW
3
2400
175 N·m
44 kW
6000
70 N·m
44 kW
Come si può vedere dalla tabella, il valore di potenza è sempre lo stesso per qualsiasi marcia, sia che si parli di ruota sia di motore ; ciò è dato dal fatto che la potenza è data dalla coppia per il numero di giri e per questo motivo non subisce variazioni con l'adozione di rapporti di marcia diversi, né potrebbe essere diversamente, in quanto sarebbe come pensare che si possa creare energia dal nulla.
Il valore di coppia alla ruota invece varia al variare della marcia e quindi della rotazione delle ruote; ciò perché, dal momento che per contrastare la potenza del motore bisogna avere una potenza uguale e contraria (si noti che si hanno molte meno rotazioni e la potenza è data dal numero di rotazioni moltiplicato per la coppia), bisogna avere una coppia superiore a quella del motore (questa coppia resistente sarà uguale e contraria a quella trasmessa dalla ruota ). Più precisamente la coppia alla ruota sta alla coppia del motore come i giri al minuto (rpm) del motore stanno ai giri al minuto (giri/min) della ruota.
It's only rock 'n roll but I like it, like it, yes I do!
Ragazzi, che discussione!!!
Non ci sono stato nel weekend, ma la questione ha attirato molta attenzione...
A parte le necessarie lezioni di recupero
, voglio fare un bel foglio di calcolo excel che poi mettero' in comune per cercare di dare uno strumento utile x capire come ottimizzare la rapportatura della trasmissione.
Vitt Ha scritto: Ragazzi, che discussione!!!
Non ci sono stato nel weekend, ma la questione ha attirato molta attenzione...
A parte le necessarie lezioni di recupero , voglio fare un bel foglio di calcolo excel che poi mettero' in comune per cercare di dare uno strumento utile x capire come ottimizzare la rapportatura della trasmissione.Grazie, sarebbe interessantissimo!
Location: WestVirginia Mountain Momma
Regione/Stato: Friuli-Venezia Giulia
Modello:
NBFL 1.6 110cv (2001-2005)
se volete ce l'ho pronto con velocità, giri dopo le cambiate e coppie alla ruota nelle varie marce.
lo posto stasera
It's only rock 'n roll but I like it, like it, yes I do!
07-05-2014, 12:25
(Questo messaggio è stato modificato l'ultima volta il: 07-05-2014, 12:30 da Vitt .)
Fatto!
E devo dire che e' venuto proprio bene!!!
E' un foglio di calcolo excel. Potete cambiare i dati nelle caselle gialle. Tutti gli altri si aggiornano automaticamente, grafici compresi.
DATI INSERITI (potete modificarli a gogo)
- curve di potenza del motore NA aspirato e turbo BBR
- rapporti al cambio NA 5M e NB 6M
- circonferenza di rotolamento dei copertoni 185/60-14 (ho inserito la tabella CUNA per chi volesse cambiare copertoni)
- curva di assorbimento della MX5 1996 (dati omologativi USA)
OUTPUT
-
grafico di potenza e coppia del motore
un classico, si spiega da solo
-
diagramma a denti di sega
si puo' vedere che
- tra cambio NA 5M e NB 6M, 1a 2a 3e e 4a sono quasi identiche. Cambia la 5a e la 6a che sull'NA non c'e'.
- la caduta di giri al cambio marcia, che e' maggiore nel camnio 5M. Ad esempio, se tiro la 1a a 6500rpm, faccio 50km/h e in 2a il motore scende a 3800rpm.
Piu' marce si anno e piu' riesco ad utilizzare il motore ai giri in cui ha prestazioni elevate. Per la massima prestazione, dovrei cambiare marcia appena dopo la potenza massima e avere una rapportatura tale che il motore col rapporto successivo scenda ad un numero di giri il piu' vicino possibile a quello di coppia massima. l'NA aspirato, che nel 1a-2a scende a 3800rpm, non e' ottimale... ma con 5M si fanno compromessi... o si progettano i cambi moderni a doppia frizione che arrivano a 9 marce...
Se aggiungere sul grafico i tratti verticali dovuti alle cambiate, capite perche' si chiama diagramma a denti di sega e capite che il motore della NA (linee rosse), cambaindo a 6500rpm, scendera' a 3800rpm in 2a, 4500rpm in 3a, 4800rpm in 4a, 5300rpm in 5a.
Ultima cosa da dire e' che la caduta di giri diventa sempre piu' piccola al salire dei giri, in modo che il motore, ad esempio quando faccio un 4a-5a, si trovi in 5a esattamente al regime di coppia massima. Ottima scelta.
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Allegati
curva potenza.pdf (Dimensione: 8.86 KB)
denti sega.pdf (Dimensione: 7.91 KB)
07-05-2014, 12:28
(Questo messaggio è stato modificato l'ultima volta il: 07-05-2014, 12:42 da Vitt .)
- spinta alla ruota
questo e' molto interessante. Le curve rosse sono vettura Turbo BBR con cambio 5M. Le nere sono vettura 1.6 aspirata e cambio 6M. Qui si vede:
- la spinta al variare delle marce. Le due curve in alto a SX sono la spinta in 1a, e cosi' via. La turbo in 5a ha la stessa spinta della aspirata in 3a... (confermo!!!)
- la forza necessaria a tenere in movimento la vettura - curva BLU.
- la spinta disponibile x accelerare nelle varie marce. Ad esempio, se accelero a manetta con la Turbo in 3a a 90km/h, il motore eroga 400kg di spinta, alla vettura ne servono 49kg. I restanti 351 kg sono l'effettiva spinta. Il motore aspirato a 90km/h in 3a eroga 271kg, quindi la vettura accelera con una spinta di 271-49=222kg.
- la velocita' massima della vettura, dove la linea blu incrocia la linea del rapporto piu' lungo. La turbo dice 210km/h, a 7000rpm (valore preso dal diagramma a denti di sega) - e confermo, l'aspirata dice 190km/h in 5a a 6700rpm o 185km/h in 6a a 5400rpm.
Allegati
spinta alla ruota.pdf (Dimensione: 9.01 KB)
Vitt Ha scritto: - spinta alla ruota
questo e' molto interessante. Le curve rosse sono vettura Turbo BBR con cambio 5M. Le nere sono vettura 1.6 aspirata e cambio 6M. Qui si vede:
- la spinta al variare delle marce. Le due curve in alto a SX sono la spinta in 1a, e cosi' via. La turbo in 5a ha la stessa spinta della aspirata in 3a... (confermo!!!)
- la forza necessaria a tenere in movimento la vettura - curva BLU.
- la spinta disponibile x accelerare nelle varie marce. Ad esempio, se accelero a manetta con la Turbo in 3a a 90km/h, il motore eroga 400kg di spinta, alla vettura ne servono 49kg. I restanti 351 kg sono l'effettiva spinta. Il motore aspirato a 90km/h in 3a eroga 271kg, quindi la vettura accelera con una spinta di 271-49=222kg.
- la velocita' massima della vettura, dove la linea blu incrocia la linea del rapporto piu' lungo. La turbo dice 210km/h, a 7000rpm (valore preso dal diagramma a denti di sega) - e confermo, l'aspirata dice 190km/h in 5a a 6700rpm o 185km/h in 6a a 5400rpm.
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